Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4978238 | Environmental Modelling & Software | 2017 | 10 Pages |
Abstract
Several global datasets are available for environmental modelling, but information provided is hardly used for decision-making at a country-level. Here we propose a method, which relies on global sensitivity analysis, to improve local relevance of environmental indicators from global datasets. This method is tested on nitrogen use framework for two contrasted case studies: mixed dairy supply chains in Rwanda and the Netherlands. To achieve this, we evaluate how indicators computed from a global dataset diverge from same indicators computed from survey data. Second, we identify important input parameters that explain the variance of indicators. Subsequently, we fix non-important ones to their average values and substitute important ones with field data. Finally, we evaluate the effect of this substitution. This method improved relevance of nitrogen use indicators; therefore, it can be applied to any environmental modelling using global datasets to improve their relevance by prioritizing important parameters for additional data collection.
Related Topics
Physical Sciences and Engineering
Computer Science
Software
Authors
Aimable Uwizeye, Pierre J. Gerber, Evelyne A. Groen, Mark A. Dolman, Rogier P.O. Schulte, Imke J.M. de Boer,